统一框架下卷积神经网络模型的回顾与比较

IF 0.5 Q4 STATISTICS & PROBABILITY
Jimin Park, Yoonsuh Jung
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引用次数: 2

摘要

利用深度学习卷积神经网络(CNN)模型进行图像分类的研究非常活跃。ImageNet大规模视觉识别挑战赛(ILSVRC)(2010-2017)是推动高效深度学习算法发展的最重要的比赛之一。本文介绍并比较了在ILSVRC中取得较高预测精度的6种重要模型。首先,我们对这些模型进行了回顾,以说明它们的独特结构和模型的特点。然后在一个统一的框架下对这些模型进行比较。因此,不包括对结构不重要的附加装置。然后考虑四个具有不同特征的流行数据集来衡量预测精度。通过研究被比较的数据集和模型的特征,我们对模型的体系结构特征提供了一些见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A review and comparison of convolution neural network models under a unified framework
There has been active research in image classification using deep learning convolutional neural network (CNN) models. ImageNet large-scale visual recognition challenge (ILSVRC) (2010-2017) was one of the most important competitions that boosted the development of e ffi cient deep learning algorithms. This paper introduces and compares six monumental models that achieved high prediction accuracy in ILSVRC. First, we provide a review of the models to illustrate their unique structure and characteristics of the models. We then compare those models under a unified framework. For this reason, additional devices that are not crucial to the structure are excluded. Four popular data sets with di ff erent characteristics are then considered to measure the prediction accuracy. By investigating the characteristics of the data sets and the models being compared, we provide some insight into the architectural features of the models.
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来源期刊
CiteScore
0.90
自引率
0.00%
发文量
49
期刊介绍: Communications for Statistical Applications and Methods (Commun. Stat. Appl. Methods, CSAM) is an official journal of the Korean Statistical Society and Korean International Statistical Society. It is an international and Open Access journal dedicated to publishing peer-reviewed, high quality and innovative statistical research. CSAM publishes articles on applied and methodological research in the areas of statistics and probability. It features rapid publication and broad coverage of statistical applications and methods. It welcomes papers on novel applications of statistical methodology in the areas including medicine (pharmaceutical, biotechnology, medical device), business, management, economics, ecology, education, computing, engineering, operational research, biology, sociology and earth science, but papers from other areas are also considered.
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